THE IMPORTANCE OF NON-FINANCIAL PERFORMANCE MEASURES DURING THE
ECONOMIC CRISIS
Pim van Gijsel
726323
Master Thesis
MSc Accounting – Track: Accountancy
Supervisor: Dr. B. DIERYNCK
18 September
2012
Abstract
This paper investigates whether the importance of non-financial performance measures
increased during the financial crisis. I find that since the start of the crisis more companies started to
use non-financial measures. Also the number of non-financial measures and the percentage of the
annual bonus determined by these measures increased during the crisis. The results also provide
evidence for the fact that CEOs that are hired during the crisis are evaluated more on basis of non-
financial measures than CEOs who are hired before the crisis. These results indicate that non-
financial performance measures become more important when financial measures are subjected to
noise.
Table of Contents
1. Introduction .................................................................................................................................... 1
2. Literature Review ............................................................................................................................ 2
2.1. CEO Compensation ................................................................................................................. 2
2.2. Performance Measures ........................................................................................................... 3
2.3. Economic Crisis ....................................................................................................................... 5
3. Methodology ................................................................................................................................... 6
3.1. Descriptive Statistics ............................................................................................................... 9
4. Results ........................................................................................................................................... 11
4.1. Use of non-financials............................................................................................................. 11
4.2. Number of non-financials ..................................................................................................... 14
4.3. Percentage of non-financials ................................................................................................ 18
4.4. New CEOs .............................................................................................................................. 20
5. Conclusions ................................................................................................................................... 26
6. Literature List ................................................................................................................................ 27
1
1. Introduction
CEOs are assessed based on different performance measures. These measures can be
divided in two main categories: financial and non-financial performance measures. Financial
performance measures are measures such as firm profit and earnings per share; non-financial
performance measures are measures such as market share, efficiency, and leadership. One of the
main reasons to use non-financial performance measures for evaluating CEO performance is that
these measures are positively associated with future financial performance (Banker, Potter, &
Srinivasan, 2000). One important disadvantage of non-financial performance measures is that such
measures are often company specific and, thus, hamper comparison with other firms.
In difficult economic times, financial performance measures are much more volatile and
noisy. In other words, based on the financial performance measures, it is difficult to determine to
what extent company performance is driven by external factors. Because of the reduced
informativeness of the financial performance measures during an economic crisis, companies have
to rely on other measures for evaluating the CEO. In this study, I will investigate whether the recent
economic crisis has lead to an increase in the reliance on non-financial performance measures.
I investigate my research question based on data from firms listed on the Dutch stock
exchanges, the AEX, AMX and AScX, from the years 2006 until 2011. The years 2006 and 2007 are
considered as pre-crisis years; the years 2008 until 2011 are considered as crisis-years. My results
are threefold. First, the number of companies that uses non-financial performance measures for
evaluating the CEO has increased since the start of the crisis. Second, the number of non-financial
measures that companies use increased during the crisis. Third, the percentage of the annual bonus
determined by non-financial measures also increased since the start of the financial crisis. Together,
the results provide evidence for an increased importance of non-financial performance measures
during the recent economic crisis.
The contributions of this study are as follows. First, this study is one of the first to show how
the economic crisis influenced evaluation of CEOs. Second, my results also confirm earlier findings
from Ittner et al. (1997) that increased noise in financial performance measures leads to a higher
emphasis on non-financial performance measures. Third, this study is also relevant in practice, since
it shows that companies tend to adjust their remuneration schemes during economical difficult
times.
In the next section the theoretical framework will be discussed. The research method and
the results will be presented in section three and four. The conclusion can be found in section five.
2
2. Literature Review
2.1. CEO Compensation
When appointing a CEO, an agency problem arises. Specifically, the CEO, who is considered
as the agent, takes actions which the owners, which are considered as the principal, cannot always
observe. The interests of the CEO and the owners do not always match. CEOs, for instance, often
have a more short-term perspective and want to meet or beat important benchmarks that are
imposed by the market. The owners, on the other hand, often have a more long-term perspective
and want a stable company. Typically, the CEO has the possibility to take actions that benefit him
but that are not in the best interest of the firm (Grossman & Hart, 1983). To ensure that the CEO
acts in the best interest of the firm, the owners design an incentive plan (Beatty & Zajac, 1994). An
incentive plan typically consists of four basic components (Murphy, 1999). First, there is a base
salary. This is the fixed amount of money the executives get paid. The other parts of the
remuneration mostly depend on the base salary (Murphy, 1999).
Second, there could be an annual bonus based on accounting performance. This bonus is
used to reward the executives for good single year’s performance. Generally an annual bonus plan
can be divided in three stages. In the first stage, no bonus is paid until a threshold performance is
achieved. The second stage is when a minimum bonus is paid at the threshold performance. The last
stage is when target bonuses are paid for achieving performance standards. In most contracts there
is a cap on the paid bonuses (Murphy, 1999). The performance can be measured in different ways.
Firms can chose for a single performance measure, but most firms use two or more different
measures.
A third part of the incentive plan are stock options. These are contracts which give
executives the right to buy a share of stocks at a pre-specified exercise price for a pre-specified term.
A reason why firms choose for stock-based compensation is the constraint in liquidity, since stock-
based compensation conserves cash on the grant date (Bryan, Hwang, & Lilien, 2000; Yermack,
1995). Even though the stock price impounds both financial and non-financial measures, a
distinction that will be discussed later in this study, compensation contracts require the stock price
to be supplemented with other measures. This is because the stock price is based on future cash
flows as opposed to their informativeness about the action choices of the manager. Thus, as long as
measures other than stock price convey information about desired managerial actions, they should
be included in the bonus contract to efficiently motivate the manager (Feltham & Xie, 1994).
3
The last component is the long-term incentive plan. This is the part of the bonus plan that is
based on the long term performance of the company. Where annual bonuses set short term targets,
the long term incentive plan is typically based on rolling-average three or five-year cumulative
performance (Murphy, 1999).
2.2. Performance Measures
The exact contribution of a manager is hard to measure because of three reasons (Feltham &
Xie, 1994). First, the actions and strategies implemented by the manager are not directly observable,
so that the manager cannot be compensated directly for the input into the firm. Second, the full
consequences of the manager’s actions are not observable, in large part because the impact of those
actions often extends beyond his time as manager of the company. Third, uncontrollable events
influence the consequences that are observed. As the exact contribution of a manager is hard to
measure, companies have to rely on performance measures to evaluate the CEO. An ideal
performance measure reflects a manager’s contribution to firm value, including both static
externalities across business units and dynamic effects of current actions on long-run value (Baker,
Gibbons, & Murphy, 1994). Such ideal performance measures are, however, rare.
There are different types of performances measures that companies can use. The balanced
scorecard method from (Kaplan & Norton, 1996) often serves as a basis for evaluation of CEOs. In
general, the Balanced Scorecard, which consists of four different perspectives, consists of two types
of measures: financial and non-financial performance measures. Financial performance measures,
which can also be classified as accounting-related performance measures, are measures such as firm
profit, earnings per share, sales growth or total shareholder return (Ibrahim & Lloyd, 2011). One
important disadvantage is that the use of financial performance measures may lead to accrual
manipulation. This can be explained by the bonus-maximization hypothesis (Watts & Zimmerman,
1986) which states that managers of firms with bonus plans are more likely to choose accounting
procedures that shift reported earnings from future periods to current periods, or vice versa, under
certain conditions. When an manager his earnings fall below the required target level, they are likely
to manipulate earnings upwards and when the earnings are too much above the required target
level, they are likely to manipulate earnings downwards (Healy, 1985). Another important
disadvantage is that financial performance measures instigate managers to focus on the short term.
Non-Financial performance measures measure the non-financial aspects of the firm.
Examples of non-financial performance measures are measures such as workforce development,
product quality, customer satisfaction, on time delivery, innovation measures, attainment of
strategic objectives, market share, efficiency, productivity, leadership and employee satisfaction
4
(Datar, Kulp, & Lambert, 2001; Ibrahim & Lloyd, 2011; Ittner, Larcker, & Rajan, 1997). Non-financial
performance measures have several important benefits compared to financial performance
measures. First, high performance on non-financial performance measures is positively related with
future financial performance. In this way, non-financial performance measures can instigate the CEO
to take actions that benefit the firm in the long term (Banker, Potter, & Srinivasan, 2000). Second,
non-financial performance measures reduce the amount of earnings management (Ibrahim & Lloyd,
2011). One important limitation of non-financial performance measures is that they may be biased,
that their computation may change over time and often differs between firms, which hamper
comparison of performance between firms (Eccles & Mavrinac, 1995). Ittner et al. (1997) also argue
that these non-financial performance measures are easier to manipulate than the financial measures
since they are rarely subjected to public verification. As both financial and non-financial
performance measures have advantages and disadvantages, combining both types of measures is
often the best option. Said et al. (2003), for instance, find that combining financial performance
measures with non-financial performance measures leads to a significant higher mean level of return
on assets and a higher level of market return.
There are different determinants that affect the type of performance measures that are
included in the compensation contract. First, the strategy of the firm is an important determinant as
the strategy determines how and on which aspects the firm wants to outperform its competitors.
Govindarajan and Gupta (1985) and Ittner et al. (1997) find that firms who follow the “build”
strategy more rely on non-financial criteria, while firms who follow the “harvest” strategy make
more use of financial measures. As adopting total quality management requires a greater reliance on
non-financial quality measures, firms that follow a quality oriented strategy place more weight on
non-financial performance measures (Ittner, Larcker, & Rajan, 1997).
Second, the amount of regulation also determines the reliance on non-financial
performance measures and more regulated firms place relatively greater weight on non-financial
performance measures. This indicates that those firms tend to create greater barriers to customer
switching by providing higher levels of service quality and customer satisfaction (Ittner, Larcker, &
Rajan, 1997).
Third, the noise of a metric also influences whether that metric will be used in a
compensation contract as more noise reduces the informational value of a performance measure
(Banker & Datar, 1989; Feltham & Xie, 1994; Ittner, Larcker, & Rajan, 1997). Thus, when the noise in
financial measures increases, firms tend to place more weight on non-financial measures.
5
2.3. Economic Crisis
As a consequence of the collapsed real estate bubble in the United States in 2006 the world
plunged in a financial crisis (Shiller, 2008). This is a severe crisis comparable to the great depression
in 1929. The first signs of the credit crisis became visible in 2007 when monetary interest rates rose
dramatically (Taylor, 2008) and in the spring of 2008 everybody had to deal with it since the
industrial output began to fall (Almunia, Bénétrix, Eichengreen, O'Rourke, & Rua, 2010). The financial
crisis influences the way in which companies behaved. For example companies choose to decrease
the amount of investments they make. In this study there will be looked at the way the financial
crisis influence the use of financial and non-financial performance measures.
As mentioned earlier Ittner, Larcker and Rajan (1997) find that if financial performance
measures became less reliable, firms focus more on non-financial performance measures. Similarly,
Banker and Datar (1989) point out that the noise in a performance measure affected the subjective
weight placed on a certain performance measure. Specifically, when the noise on a measure
increased, the weight placed on it decreased. In line with this prediction, Davila and Venkatachalam
(2004) find that the importance of non-financial performance measures is affected by the noise in
other performance measures. Since the financial crisis increases the noisiness of financial
performance measures, it can be expected that firms will increase their reliance on non-financial
performance measures for evaluating their CEOs.
An important characteristic of non-financial performance measures is that they positively
affect future performance (Banker, Potter, & Srinivasan, 2000). Non-financial performance measures
are also often considered as the process measures that should lead to good financial performance.
Furthermore, firms especially want that managers guide the company through the crisis. In order to
emphasize this to managers, firms can include more non-financial performance measures in the
compensation contract of the manager. Another related argument is that firms often want to signal
future perspectives to the market. During a crisis, for instance, firms want to signal that they will
survive the crisis. Non-financial performance measures can be one possible way to signal good
future perspectives.
As both argumentations support that idea that the crisis will increase the reliance on non-
financial performance measures, I formulate the following hypothesis:
H1: During the economic crisis, firms rely more on non-financial performance measures to evaluate
their CEOs.
6
3. Methodology
The data for this study are hand-collected from the annual reports of the publicly listed
companies on three different Dutch stock exchanges (AEX, AMX, and AScX). In total, I will collect
data of 75 companies (each stock exchange exist of 25 companies) for the period 2006 until 2011.
Since the crisis started in 2008, 2006 and 2007 will be considered as pre-crisis years, and the years
2008 until 2011 will be considered as the crisis years.
The influence of the crisis on the importance of non-financial performance measures in CEO
compensation contracts will be tested in four different ways. First, I will test whether more
companies are using non-financial performance criteria during the crisis. The dependent variable for
these tests is UseNF and has a value of 1 if the company uses non-financial performance indicators
to evaluate the CEO and 0 if the company does not use non-financial performance indicators.
Second, I will examine the influence of the crisis on the number of non-financial measures that is
used in the compensation contract. The number of non-financial performance measures is measured
by NumNF. Third, I will test the influence of the crisis on the percentage of the bonus that is
determined by non-financial performance measures. The percentage of the annual bonus that is
determined based on non-financial performance measures is measured by PerNF. In a fourth test, I
will analyze the compensation contracts of CEOs that have been hired during the crisis. It could be
that compensation contracts are signed for a longer period and difficult to revise because of the
crisis.
The empirical models are as follows:
The test variable is Crisis, which is 0 for the pre-crisis years, 2006 and 2007, and 1 for the
crisis years, 2008 until 2011. The other test variable is whether the CEO is newly hired during the
year (NewCEO), which is 1 when a new CEO is hired during the year and 0 when the CEO was already
active. Both variables will be tested in the different models presented above.
7
I will also include control variables that are known to influence the importance of non-
financial performance measures. First, I control for company size (Size) by including the logarithm of
the total assets (Aldamen, Duncan, Kelly, & McNamara, 2011). Previous research indicated that
company size influences the usage of the balanced scorecard (Hoque & James, 2000). Since the
distinction between financial and non-financial targets is part of the balance scorecard, firm size
could have an impact on the use of non-financial performance measures. The value of the total
assets will be collected from the Compustat database.
Second, I also include whether the company has an internal promoted CEO (IntCeo). Internal
CEO’s put more emphasis on planning for the future (Miller & Toulouse, 1986) and since non-
financial performance measures are long term oriented, there could be a relation between the fact
the CEO is internally promoted and the use of non-financial targets in his compensation contract.
When a CEO was already employed at the company before he was hired as CEO, this variable will be
1.
Third, I include whether the company made a profit or a loss in the previous book year
(ResPrevBY). Bad performance in the previous year may be a motivation to change the
compensation contract and to include more non-financial performance measures. If the company
made a profit in the previous book year the value of this variable will be 1 and if the company made
a loss the value will be 0. The values were found in the Orbis database, which was filtered for public
listed companies in the Netherlands on the Euronext Amsterdam stock exchange.
Finally, I will include an industry-dummy (Sector). I already pointed out that regulation is a
factor that influences the choice of performance measures. Since all companies are based in the
Netherlands; it is fair to assume that companies that are alike will have to deal with the same
regulation. That is why it can be assumed that companies who are active in the same sector will have
to comply with equal regulation. The different sectors are determined following the Global Industry
Classification Standard (GICS) that is used by Compustat. The GICS distinguishes 10 sectors, which
are not all represented in this research. The 75 companies in our sample are divided over 9 sectors
as presented in Table 1.
8
Table 1: Sector Distribution
GICS Code Sector name Frequency Percentage
10 Energy 4 5,3 %
15 Materials 5 6,7 %
20 Industrials 18 24,0 %
25 Consumer Discretionary 9 12,0 %
30 Consumer Staples 8 10,7 %
35 Health Care 4 5,3 %
40 Financials 13 17,3 %
45 Information Technology 13 17,3 %
50 Telecommunication Services 1 1,3 %
Since the sector values can only be taken into account when using dummy variables the
models will be slightly adjusted. Every sector will get a separate dummy and since sector 20 is the
most frequent, that sector will come back in the constant. The represents the portion of the
dependent variable, that is not explained by the other variables in the model. Taking that into
account the models that will be used are the following:
(1)
(2)
(3)
9
3.1. Descriptive Statistics
From all of the 75 companies six years have been investigated, so there is a total of 450
observations. As Table 2 shows, not all these observations can be used. Especially the number of
non-financial performance criteria is most of the times not totally disclosed. Only in 201 of the 450
observations this was measureable. In over the 90% of all observations the percentage of non-
financial performance measures used was disclosed.
Table 2: Overview of data completeness
Observations Number of Companies
All 450
The use of financial and/or non-financial measures disclosed 416
The number of financial and/or non-financial measures used disclosed 321
The number of both financial and non-financial measures used disclosed 195
Only the number of financial measures used disclosed 120
Only the number of non-financial measures used disclosed 6
The percentage of both financial and non-financial measures used disclosed 411
Table 3 presents the descriptive statistics of the two samples which will be the basis of the
most important regressions that will be conducted. The first sample consists of all companies that
disclose their use of non-financial performance measures and the second sample consists of the
observations of the companies who use non-financial in one of the examined years.
In the first sample the average number of non-financial performance measures is 1,19.
When the companies that do not use non-financial measures at all are excluded the average number
of non-financial measures grows to 1,71. This is in both cases lower than the average number of
disclosed financial performance measures, which are respectively 2,08 and 2,23. The average
percentage that the non-financial performance measures determine is 20,02% of the total annual
bonus in the first sample. When only the companies that use non-financial measures during one of
the examined year are taken into account the percentage is 25,59%.
10
In the complete sample, CEOs earned on average a fixed salary of € 578.433. On top of that
they most of times earned a variable compensation. In 14.9% of the firm-years, there was no bonus
payment. The bonus payment was on average € 415.198, which is 57,91% of the fixed salary. The
average total assets, which are used to determine the company size, of the companies in the sample
are € 12.933.000.000. In the second sample both the average salary, which is € 606.367, and the
average bonus payment, which is € 433.367, are slightly higher. The bonus is 57,46% of the salary,
which is in line with the first sample. When the companies that do not use non-financial measures
are excluded, the average company size increases. The average total assets are then
€15.167.000.000.
Table 3: Descriptive Statistics
All observations in which the use of non-financial measures is disclosed Only companies that use non-financial measures
N Minimum Maximum Mean Std. Dev. N Minimum Maximum Mean Std. Dev.
CEO Salary 402 79.500 2.005.000 578.433 346.286 331 79.500 2.005.000 606.367 354.455
CEO Bonus 402 0 3.750.000 415.198 551.843 331 0 3.750.000 433.367 580.723
Bonus/Salary 402 0 2,75 0,58 0,49 331 0 2,75 0,57 0,47
PerNF* 397 0 0,75 0,21 0,19 326 0 0,75 0,26 0,18
NumNF* 195 0 7 1,19 1,81 136 0 7 1,71 1,96
NumF* 306 0 8 2,08 1,35 247 0 8 2,23 1,35
NewCEO 402 0 1 0,12 0,33 331 0 1 0,12 0,33
IntCEO 402 0 1 0,68 0,47 331 0 1 0,68 0,46
ResPrevBY 402 0 1 0,85 0,36 331 0 1 0,87 0,34
Total Assets** 402 2,64 345.257 12.933 40.977. 331 4,28 345.257 15.167 44.815
* Some companies disclose both the number as the percentage of non-financial measures they use. Other companies disclose only the percentage of
non financial measures they use, while others only disclose the number of non-financial measures they use. That is why the number of observations
for these variables varies.
** Total assets are written down in millions
11
4. Results
4.1. Use of non-financials
Graph 1 shows that the use of non-financial performance measures increased since 2006. In
that year 51,5% of the companies used non-financial measures. In 2011 the percentage increased to
78,9%. To prove the positive relation between the crisis and the use of non-financial measures I will
run regression (1) on two different samples. First, I will run the regression on all firms that disclose
information about the performance measures. Second, I will also run the regression on all firms that
did not use non-financial performance measures before the crisis.
Table 4 shows the correlation between the variables in this model. In most cases there is
small correlation and in a few cases there medium correlation.1 This tells us that the risk of risk of
multicollinearity is very low in this model. The only relation that stands out is the one between size
and the use of non-financials.
The results of the regression are presented in Table 5. With respect to the full sample, the
results show that Crisis is positive and significant (β1= 0,947; t-value = 12,024) In other words, the
1 There is small correlation when the correlation coefficient lies between the 0,10 and 0,29 (or between the -
0,10 and -0,29). When the correlation is between the 0,30 and 0,49 (or between -0,30 and -0,49) there is medium correlation and when the correlation coefficients lie between the 0,50 and 1,00 (or between -0,50 and -1,00) there is large correlation. (Cohen, 1988)
12
Table 4: Correlations among the UseNF model
UseNF Crisis NewCEO intCEO S10 S15 S25 S30 S35 S40 S45 S50 Size ResPBy
UseNF 1,00
Crisis 0,17*** 1,00
NewCEO -0,05 0,09** 1,00
intCEO 0,01 -0,03 -0,09** 1,00
S10 0,01 -0,01 -0,03 -0,05 1,00
S15 0,05 0,01 0,01 -0,08* -0,06 1,00
S25 -0,18*** -0,02 -0,06 0,01 -0,10** -0,10** 1,00
S30 -0,14*** -0,00 0,02 0,06 -0,09** -0,09** -0,13*** 1,00
S35 -0,14*** -0,00 0,04 -0,22*** -0,06 -0,06 -0,09** -0,08 1,00
S40 0,14*** 0,02 0,02 -0,10** -0,11** -0,11** -0,17*** -0,15 -0,11 1,00
S45 -0,08* 0,02 0,00 0,02 -0,11** -0,11** -0,17*** -0,15 -0,10 -0,19 1,00
S50 0,09** -0,01 0,02 -0,13*** -0,03 -0,03 -0,05 -0,04 -0,03 -0,05 -0,05 1,00
Size 0,33*** 0,06 0,02 0,00 0,18*** 0,24*** -0,21 0,06 -0,24 0,18 -0,35 0,15 1,00
ResPBy 0,15*** -0,13*** -0,08* -0,18*** 0,05 0,08* 0,01 0,11 -0,25 -0,16 -0,06 0,5 0,20 1,00
*** Significant at the 1 percent level (one-tail)
** Significant at the 5 percent level (one-tail)
* Significant at the 10 percent level (one-tail)
13
number of firms that includes non-financial performance measures in CEO contracts has
increased during the crisis. The odds ratio shows that during the companies are 2.578 times more
likely to use non-financial performance measures in the crisis. With respect to the control variables, I
find that firm size (β4= 0,640; t-value = 43,202) and a profit in the previous book year (β5= 0,889; t-
value 9,244) are positively and significantly related to the number of firms that use non-financial
performance measures. The latter result is notable as it was expected that companies who suffered
a loss would be more eager to adjust their compensation contracts.
Running the regression on the sample of companies that did not use non-financials before
the crisis leads to similar results. Specifically, Crisis is also positively and significantly related to the
number of firms that uses non-financial performance measures in CEO compensation contracts (β1=
3,081; t-value = 34,150). When a company did not use non-financial performance measures before
the crisis, they are over 20 times more likely to use these measures during a crisis.
Table 5: Coefficients
All observations No NF before the crisis
B Wald Odds Ratio B Wald Odds Ratio
Crisis ,947*** 14,076 2,578 3,081*** 23,595 21,789
NewCEO -,532 2,218 ,588 -,778 1,897 ,459
IntCEO -,239 ,776 ,788 ,321 ,526 1,378
Size ,640*** 15,677 1,896 ,272 1,318 1,312
Result Previous Book Year ,889*** 6,797 2,434 -,018 ,002 ,982
S Energy -1,097** 4,102 ,334 -,609 ,552 ,544
S Materials -,918 2,534 ,399 -,350 ,167 ,704
S Consumer Discretionary -1,461*** 13,046 ,232 -1,071* 3,558 ,343
S Consumer Staples -1,739*** 17,627 ,176 -,815 2,045 ,442
S Health Care -1,175** 3,899 ,309 -1,618* 3,025 ,198
S Financials -,012 ,001 ,988 ,276 ,212 1,318
S Information Technology -,588 2,205 ,556 -1,520** 5,574 ,219
S Telecom. Services 18,950 ,000 1,698E8
Constant -5,708*** 13,661 ,003 -5,159** 5,188 ,006
N 416 225
Cox & Snell R Square 0,210 0,273
Nagelkerke R Square 0,287 0,379
*** Significant at the 1 percent level (two-tailed)
** Significant at the 5 percent level (two-tailed)
* Significant at the 10 percent level (two-tailed)
14
4.2. Number of non-financials
Graph 2 shows that the number of non-financial performance measures used to evaluate a
CEO increased during the crisis. Companies used on average 0,56 non-financial performance
measure in 2006, but in 2011 the average already increased to 2,14 non-financial measures.
In this case I will run regression (2) on three different samples. First, I run the regression on
all the firms that disclose the number of non-financial performance measures they use. Second, I will
run the regression only on the companies that use non-financial measures in one of the examined
years. Last, the regression is run only on the companies that use non-financial measures both before
as after the crisis.
Table 6 shows the correlations among the variables in this model. In most cases there is
small correlation and in a few cases there medium correlation. There are no strong relations
between the individual relations themselves, so the risk of multicollinearity between the variables is
low.
15
Table 6: Correlations among the NumNF model
NumNF Crisis NewCEO intCEO S10 S15 S25 S30 S35 S40 S45 S50 Size ResPBy
NumNF 1,00
Crisis 0,26*** 1,00
NewCEO 0,05 0,13** 1,00
intCEO -0,01 -0,10* -0,17*** 1,00
S10 -0,09 -0,11* -0,13** -0,18*** 1,00
S15 0,00 0,11* -0,14** -0,10* -0,05 1,00
S25 -0,24*** -0,12* -0,07 0,05 -0,09* -0,10* 1,00
S30 -0,14** 0,01 0,01 0,09 -0,09 -0,09* -0,18*** 1,00
S35 -0,14** -0,00 0,04 -0,13** -0,06 -0,05 -0,09* -0,09 1,00
S40 0,22* 0,08 0,17*** 0,05 -0,10* -0,11* -0,20*** -0,19*** -0,10* 1,00
S45 -0,08 0,06 0,07 -0,17*** -0,10* -0,10* -0,19*** -0,19*** -0,10* -0,21*** 1,00
S50 0,34*** 0,04 0,03 -0,14** -0,04 -0,04 -0,07 -0,07 -0,04 -0,08 -0,07 1,00
Size 0,32*** 0,04 -0,11* 0,14** 0,04 0,17*** -0,18*** 0,6 -0,33*** 0,16** -0,21*** 0,16** 1,00
ResPBy 0,08 -0,14** -0,25*** 0,22*** 0,03 0,10* -0,06 0,19*** -0,29*** -0,13** -0,11* 0,07 0,33*** 1,00
*** Significant at the 1 percent level (one-tail)
** Significant at the 5 percent level (one-tail)
* Significant at the 10 percent level (one-tail)
16
Table 7 presents the results of the regressions. On average companies use 0,853 more non-
financial targets during the crisis than before (β1= 0,853; t = 3,593). With respect of the control
variables, I find that most sector and company size are significantly related to the number of non-
financial measures used. It is notable that all sectors are negatively associated with the use of non-
financial targets except the information technology and the telecommunication sector (β6 = -1,381; t
= -2,345, β7 = -1,163 ; t = -2,086, β8 = -1,450 ; t = -3,769, β9 = -1,368 ; t = -3,621, β10 = -1,388 ; t = -
2,196, β12 = 0,933 ; t = 2,410, β13 = 2,623 ; t = 3,530). Company size is positively related to the
number of non-financial performance measures (β4 = 0,225; t = 2,318), so the bigger the company,
the more non-financial targets are used. An explanation for this could be the fact that bigger
companies have more complex bonus schemes, and therefore use more different (non-financial)
performance measures. Whether a CEO is internally hired or whether a company reported a profit or
a loss in the previous book year are both not significantly related to the number of non-financial
targets.
When adjusting the sample the results remain mostly the same. When running the
regression on the sample with only companies in it that use non-financials in one of the examined
years, Crisis is significantly en positively related to the number of non-financial measures used (β1 =
1,459; t = 3,883). So in these companies the increase in non-financial measures is almost twice as big
as in the basic sample. Regarding the control variables, the same factors are significant, except for a
few sectors that were significantly related during the first test.
When running regression on the last sample, which exists of the companies that were
already using non-financial performance measures before the crisis started , the result of Crisis is
also significantly and positively related to the number of non-financial measures (β1 = 0,833; t =
2,146). . The effects of the control variables are slightly different. The most notable difference is the
fact that NewCEO is significant (β2 = 1,048; t = 1,995). This is an indication that companies that
already used non-financial measures before the crisis are more eager to adjust their compensation
plan when appointing a new CEO. A possible explanation for this is that CEO contracts are
determined for longer term, so when a new CEO is hired, it is possible for companies to adjust these
plans.
17
Table 7: Coefficients (Dependent variable is NumNF)
All observations
Companies that use
NF
Companies that use NF
before and after crisis
Crisis 0,853***
(3,593)
1,459***
(3,883)
0,833**
(2,146)
NewCEO -0,072
(-0,229)
-0,327
(-0,763)
1,048**
(1,995)
IntCEO -0,157
(-0,638)
0,203
(0,545)
-0,814
(-1,391)
Size 0,225**
(2,318)
0,705**
(2,477)
0,638
(0,947)
ResPrevBY 0,141
(0,428)
0,731
(1,363)
-0,080
(-0,065)
Energy
(S10)
-1,381**
(-2,345)
0,379
(0,312)
-
Materials
(S15)
-1,163**
(-2,086)
-2,171**
(-3,410)
-
Consumer Discretionary
(S25)
-1,450***
(-3,769)
-1,944**
(-2,550)
-3,284***
(-4,404)
Consumer Staples
(S30)
-1,368***
(-3,621)
-1,339**
(-2,420)
-2,769***
(-3,780)
Health Care
(S35)
-1,388**
(-2,196)
-2,187**
(-2,146)
-
Financials
(S40)
-0,003
(-0,009)
-0,176
(-0,377)
-2,416***
(-2,991)
Information Technology
(S45)
0,933**
(2,410)
0,036
(0,059)
-
Telecom. Services
(S50)
2,623***
(3,530)
1,613*
(1,921)
0,426
(0,451)
(Constant) -0,735
(-0,764)
-5,792*
(-1,981)
-2,670
(-0,413)
N 199 110 41
R Square 0,348 0,396 0,696
*** Significant at the 1 percent level (two-tail)
** Significant at the 5 percent level (two-tail)
* Significant at the 10 percent level (two-tail)
18
4.3. Percentage of non-financials
To look at the percentage of the bonus that is determined by non-financial measures I will
run regression (3) on the same three different samples as those presented at regression (2). First,
the complete sample; second, only on the companies that use non-financial measures and last, only
on the companies that already used non-financial measures before the crisis. As in the other samples
the risk of multicollinearity is small. Table 8 shows in the case of most of the variables there is only
small correlation.
Graph 3 shows that non-financial measures became more and more important for evaluating
CEO performance. While in 2006 on average 14% of the bonus was determined by non-financial
measures, in 2011 this percentage was doubled to 28%.
Table 9 shows that Crisis is positively and significantly related to the percentage of non-
financial performance measures (β1 = 0,089; t = 4,723). This indicates that the importance of non-
financial performance measures increased during the crisis. On average the use of non-financial
performance measures used during the crisis was 8,9% higher than before. Whether there is
appointed a new CEO is not significantly related to the percentage of non-financial performance
measures used.
When looking at the control variables, company size has a significant impact on the
percentage of non-financial performance measures used in CEO contracts (β4 = 0,043; t = 4,702). So
the bigger the company the bigger the part of the CEO bonus that is determined by non-financial
targets. There are also some sectors that could be significant. On 1% level this are the consumer
discretionary and consumer staples (β8 = -0,104; t = -,443, β9 = -0,138; t = -4,375) and on a 5% level
19
Table 8: Correlations among the PerNF model
PerNF Crisis NewCEO intCEO S10 S15 S25 S30 S35 S40 S45 S50 Size ResPBy
PerNF 1,00
Crisis 0,21*** 1,00
NewCEO 0,02 0,09** 1,00
intCEO 0,03 -0,04 -0,19*** 1,00
S10 0,12*** 0,04 0,06 -0,05 1,00
S15 0,01 0,00 -0,13*** -0,08* -0,06 1,00
S25 -0,18*** -0,02 -0,07* 0,00 -0,09** -0,10** 1,00
S30 -0,14*** 0,02 0,05 0,07* -0,08* -0,08** -0,13*** 1,00
S35 -0,16*** 0,00 0,05 -0,23*** -0,06 -0,06 -0,10** -0,08** 1,00
S40 0,15*** 0,01 0,13*** -0,09** -0,10** -0,11** -0,18*** -0,15*** -0,11** 1,00
S45 -0,06 0,01 0,01 0,02 -0,10** -0,11** -0,17*** -0,15*** -0,11** -0,19*** 1,00
S50 0,08 -0,01 0,02 -0,13 -0,03 -0,03 -0,05 -0,04 -0,03 -0,06 -0,05 1,00
Size 0,34*** 0,02 -0,06 0,06 0,18*** 0,21*** -0,22*** 0,06 -0,27*** 0,16*** -0,27*** 0,13*** 1,00
ResPBy 0,09** -0,15*** -0,26*** 0,19*** 0,07* 0,08* -0,00 0,11** -0,26*** -0,16*** -0,06 0,25*** 0,06 1,00
*** Significant at the 1 percent level (one-tail)
** Significant at the 5 percent level (one-tail)
* Significant at the 10 percent level (one-tail)
20
also the materials sector and the health care sector are significantly related to the dependent
variable (β7 = -0,080; t = -1,967, β10 = -0,107; t = -2,400).
Running regression on the adjusted sample, with only the companies that used non-financial
performance measures in one of the examined years, leads to more or less the same results. The
crisis influences the use of non-financial measures a bit stronger in comparison with the first sample
(β1 = 0,110; t = 5,478). This seems logical because companies, who do not use non-financial
performance measures, will bring the average percentage, used in bonus contracts, down.
For the last regression I ran with this model, the sample in which only the companies that
used non-financial performance measure both before as after the crisis is used. While most results
remained the same, there is one interesting point to mention. The influence of the crisis is still
significant and positive (β1 = 0,047; t = 2,229), but less than in the other models. This indirectly
indicates that companies who did not use non-financial performance measures before the crisis
increased the use on these measures more than companies who already used non-financial
measures before the crisis.
4.4. New CEOs
When a CEO contract is constructed before the crisis started, they cannot always be
adjusted. This will be easier when a new CEO is appointed. I will look whether companies start using
more non-financial measures when their CEO is hired during the crisis. Therefore the variable CEOCri
will be added to the models. This leads to the following empirical models:
21
Table 9: Coefficients (dependent variable is PerNF)
All observations
Companies that use
NF
Companies that use NF
before and after crisis
Crisis 0,089***
(4,723)
0,110***
(5,478)
0,047**
(2,229)
NewCEO -0,001
(-0,022)
-0,021
(-0,772)
0,032
(1,078)
IntCEO -0,001
(-0,053)
0,005
(0,258)
0,001
(0,061)
Size 0,043***
(4,702)
0,046***
(4,243)
0,042***
(2,795)
ResPrevBY 0,025
(0,987)
0,021
(0,747)
-0,012
(-0,324)
Energy
(S10)
0,008
(0,180)
0,073
(1,629)
0,067
(1,364)
Materials
(S15)
-0,080**
(-1,967)
-0,097**
(-2,476)
-0,015
(-0,347)
Consumer Discretionary
(S25)
-0,104***
(-3,443)
-0,025
(-0,711)
-0,051
(-0,860)
Consumer Staples
(S30)
-0,138***
(-4,375)
-0,109***
(-3,168)
-0,128***
(-2,773)
Health Care
(S35)
-0,107**
(-2,400)
-0,093*
(-1,922)
-0,052
(-0,834)
Financials
(S40)
0,006
(0,204)
0,011
(0,387)
-0,016
(-0,559)
Information Technology
(S45)
-0,039
(-1,362)
0,019
(0,601)
0,041
(1,330)
Telecom. Services
(S50)
0,027
(0,358)
0,013
(0,187)
-0,026
(-0,431)
(Constant) -0,222**
(-2,511)
-0,253**
(-2,316)
-0,099
(-0,629)
N 405 328 205
R Square 0,227 0,229 0,152
*** Significant at the 1 percent level (two-tail)
** Significant at the 5 percent level (two-tail)
* Significant at the 10 percent level (two-tail)
22
The results of these regressions are shown in Table 10. The results of earlier test stay up, so
Crisis has a significant and positive effect on the use of non-finacial measures (β1 = 0,819; t =
12,024), the number of non-financial measures used (β1 = 0,490; t = 1,954), and the percentage of
the annual bonus determined by non-financial measures (β1 = 0,072; t = 3,577). Also company size
and some sectors are still significant. Whether the CEO is hired during the crisis is significantly
related with both the number of non-financial measures (β3 = 1,166; t = 3,611) and the percentage
of the bonus determined by non-financial measures (β3 = 0,069; t = 2,494). Notable is that by adding
CEOCri, NewCEO is a negative and significantly related to the number of non-financial measures used
in compensation contracts (β2 = -0,747; t = -2,077). So this indicates that hiring a new CEO has a
negative impact on the number of non-financial measures used, but when it happens during the
crisis, it has a positive impact on this number.
For a second test I adjusted the sample by removing the companies that didn’t appoint a
new CEO.With this sample it is not necessary to control for the variables NewCEO and CEOCri
anymore. Table 11 shows that crisis is still significantly related to both the use of non-financial
measures (β1 = 1,423; t = 9,001), the number of non-financial measures (β1 = 1,246; t = 3,565) and
the percentage of non-financial measures used in a compensation contract (β1 = 0,115; t = 4,561).
With respect to the control variables, the most striking conclusion is the fact that, while using only
the companies that appointed a new CEO, the result of the previous book year is, on a significance
level of 10%, positively associated with the use of non-financial measures (β4 = 0,926; t = 1,775). This
indicates that companies who had bad results and appointed a new CEO are more eager to use more
non-financial performance measures.
Finally I performed some test in which I only took the companies who appointed their new
CEO before the crisis (so in the years 2006 and 2007). Since the samples were not really big, with 66
observations in the UseNF model, 33 observations in the NumNF model and 63 in the PerNF, it is
hard to draw any conclusions from these tests. In the NumNF model there are only some significant
results regarding some sectors. In Table 12 is shown that the use of non-financial measures (β1 =
2,100; t = 3,302) and the percentage of non-financial performance measures used (β1 = 0,090; t =
2,061), are still significant and positively related to the crisis variable. So companies who appointed a
CEO before the crisis started are still increasing the use of non-financial measures during the crisis.
Some sector variables are also significant, but the other control variables do not give significant
results.
23
Table 10: Coefficients (CEOCri included)
UseNF
(Logistic Regression)
NumNF
PerNF
Crisis 0,819***
0,490*
(1,954)
0,072***
(3,577)
NewCEO -0,853*
-0,747**
(-2,077)
-0,042
(-1,355)
CEOCri 0,541
1,166***
(3,611)
0,069**
(2,494)
IntCEO -0,181
-0,041
(-0,170)
0,006
(0,311)
Size 0,639***
0,265***
(2,792)
0,044***
(4,890)
ResPrevBY 0,980***
0,258
(0,803)
0,036
(1,397)
Energy
(S10)
-1,139**
-1,224**
(-2,139)
-0,003
(-0,071)
Materials
(S15)
-0,810
-0,837
(-1,528)
-0,068*
(-1,652)
Consumer Discretionary
(S25)
-1,444***
-1,424***
(-3,821)
-0,101***
(-3,381)
Consumer Staples
(S30)
-1,787***
-1,444***
(-3,937)
-0,145***
(-4,597)
Health Care
(S35)
-1,151*
-1,174*
(-1,908)
-0,102**
(-2,303)
Financials
(S40)
-0,059
-0,169
(-0,473)
-0,002
(-0,054)
Information Technology
(S45)
-0,590
-0,923**
(-2,460)
-0,040
(-1,376)
Telecom. Services
(S50)
18,975
2,757***
(3,823)
0,031
(0,416)
(Constant) -5,797***
-1,226
(-1,302)
-0,246***
(-2,790)
N
Cox & Snell
Nagelkerke
416
0,213
0,292
200 405
R Square 0,391 0,239
*** Significant at the 1 percent level (two-tail)
** Significant at the 5 percent level (two-tail)
* Significant at the 10 percent level (two-tail)
24
Table 11: Coefficients (Only Companies with new CEOs)
UseNF
(Logistic Regression)
NumNF
PerNF
Crisis 1,423*** 1,246***
(3,565)
0,115***
(4,561)
IntCEO 0,807* -0,315
(-0,702)
0,012
(0,463)
Size 0,842*** 0,147
(1,103)
0,036***
(3,273)
ResPrevBY 0,653 0,926*
(1,775)
0,055
(1,518)
Energy
(S10)
-0,423 - 0,075
(1,339)
Materials
(S15)
-1,271 -2,744***
(-2,807)
-0,146
(-2,930)
Consumer Discretionary
(S25)
0,212 -1,623***
(-2,472)
-0,060
(-1,150)
Consumer Staples
(S30)
-2,308*** -2,016***
(-3,576)
-0,180***
(4,375)
Health Care
(S35)
-2,259** -1,573**
(-2,148)
-0,178***
(3,156)
Financials
(S40)
0,645 0,069
(0,130)
-0,007
(-0,190)
Information Technology
(S45)
-0,616 -0,966*
(-1,864)
-0,082**
(-2,000)
Telecom. Services
(S50)
19,474 2,113**
(2,476)
-0,004
(-0,054)
(Constant) -8,495*** -0,492
(-0,390)
-0,168
(-1,526)
N
Cox & Snell
Nagelkerke
240
0,314
0,438
105 236
R Square 0,440 0,324
*** Significant at the 1 percent level (two-tail)
** Significant at the 5 percent level (two-tail)
* Significant at the 10 percent level (two-tail)
25
Table 12: Coefficients (Only Companies with new CEOs before the crisis)
UseNF
(Logistic Regression)
NumNF
PerNF
Crisis 2,100** 0,920
(1,491)
0,090**
(2,061)
IntCEO 0,389 -0,286
(-0,336)
-0,015
(-0,271)
Size -0,144 0,055
(0,242)
0,008
(0,427)
ResPrevBY 0,855 0,390
(0,403)
-0,012
(-0,135)
Energy
(S10)
- - -
Materials
(S15)
-1,903 -3,181**
(2,282)
-0,373***
(-5,467)
Consumer Discretionary
(S25)
- - -
Consumer Staples
(S30)
-24,225 -3,018***
(3,120)
-0,548***
(-6,692)
Health Care
(S35)
-4,272*** -2,776**
(-2,630)
-0,509***
(-6,245)
Financials
(S40)
-1,143 -0,140
(-0,155)
-0,211***
(-2,840)
Information Technology
(S45)
18,875 - 0,007
(0,080)
Telecom. Services
(S50)
- - -
(Constant) 1,579 1,739
(0,828)
0,434**
(2,395)
N
Cox & Snell
Nagelkerke
66
0,461
0,626
33 63
R Square 0,542 0,670
*** Significant at the 1 percent level (two-tail)
** Significant at the 5 percent level (two-tail)
* Significant at the 10 percent level (two-tail)
26
5. Conclusions
In this study, I investigate whether the crisis has increased the use of non-financial
performance measures in CEO bonus contracts. I use data from Dutch listed companies from 2006 to
2011 to investigate my research question. The results are as follows. First, the results provide
evidence for the fact that companies use more non-financial performance measures since the start
of the financial crisis. They show that more companies are using non-financial performance
measures. Especially companies who did not use non-financial performance measures before the
crisis, started to use non-financial measures during the crisis. Second, since the crisis started, the
number of non-financial performance measures used by companies increased. Third, companies
increased the percentage of the annual bonus determined by non-financial measures during the
crisis. Fourth, the results show that CEOs who are appointed after 2007 have more non-financial
performance targets in their contracts. The percentage of the annual bonus that is determined by
the non-financial targets is also higher when the CEO is appointed during the crisis.
All these results provide evidence for the fact that companies adjust their compensation
contracts during difficult economic times. They tend to increase their focus on non-financial
performance measures. This is in line with the prediction that due to the noise in the financial
performance measures companies are going to use more non-financial performance measures.
A limitation of this research is that not all the possible variables that could influence the
choice of performance measures are taken into account. Variables like the characteristics of the CEO
(CEO power, CEO reputation, CEO Ownership (Davila & Venkatachalam, 2004)), organizational
strategy (Ittner, Larcker, & Rajan, 1997), and the characteristics of the remuneration committee
could have an influence on the choice of performance measures. Another limitation of this research
is the fact that the companies in the sample are all Dutch. It could be that due to regulation or
cultural issues, or other circumstances the results cannot be generalized for all international
companies.
Future research can focus on whether companies that used non-financial performance
measures during the crisis perform better during the crisis than companies who did not implement
these measures. Another possibility is to look whether companies tend to decrease the use of non-
financial performance measures when the crisis is over. Last, there can be looked at whether the
increase of the use of non-financial performance measures is perceived as positive by the market.
27
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